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     [[File:CRL Map 2024-10-09 at 2.53.52 PM.png|frameless|800px|alt=Climate Risk Map Overview|class=climate-risk-map-image]]
     [[File:CRL Map 2024-10-09 at 2.53.52 PM.png|frameless|800px|alt=Climate Risk Map Overview|class=climate-risk-map-image]]
     <p style="margin-top: 10px;"><em>Figure 1: Climate Risk Map Overview</em></p>
     <p style="margin-top: 10px;"><em>Climate Risk Map Web Application</em></p>
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= Overview =
= Overview =


'''<big>''“40 years ago, the US experienced a billion-dollar disaster every four months. Today, we experience a billion-dollar disaster every three weeks."''</big>'''  
'''<big>''“40 years ago, the US experienced a billion-dollar disaster every four months. Today, we experience a billion-dollar disaster every three weeks."''</big>''' -Laura H. Gillam, Associate Director for Climate, Energy, Environment, and Science, Office of Management and Budget & Wesley E. Yin, Chief Economist, Office of Management and Budget for the White House on April 22nd, 2024




Climate change carries significant financial risks to Washington state businesses and local communities, and we need to rapidly develop open-source tools and resources to help decision-makers adapt.
[[File:F1-29-US-Billion-Dollars-Disaster-Events-1980-2023.png|500px|frameless|center|alt=US Billion Dollar Disaster Events|Source: bts.gov]]
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<p><em>bts.gov</em></p>
</div>


== Purpose ==
== Purpose ==
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By meeting these objectives, the Climate Risk Map seeks to bridge the gap between climate science and practical, real-world decision-making, ensuring that all sectors have the necessary information to build resilience against future climate challenges.
By meeting these objectives, the Climate Risk Map seeks to bridge the gap between climate science and practical, real-world decision-making, ensuring that all sectors have the necessary information to build resilience against future climate challenges.


== Roadmap Summary ==
== Roadmap ==
The Climate Risk Map is in its early stages of development, and our journey will unfold in multiple phases as we build out the platform’s capabilities. We are just getting started, and our vision is to continuously evolve the platform, responding to the needs of stakeholders and advancing our understanding of climate risks.
The Climate Risk Map is in its early stages of development, and our journey will unfold in multiple phases as we build out the platform’s capabilities. We are just getting started, and our vision is to continuously evolve the platform, responding to the needs of stakeholders and advancing our understanding of climate risks.


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     <div style="color: #4B2E83; font-size: 1.3em; font-weight: bold;">Phase 2: Expansion of Data</div>
     <div style="color: #4B2E83; font-size: 1.3em; font-weight: bold;">Phase 2: Expansion of Data</div>
     <p style="margin: 0;">This phase focuses on expanding the platform’s data quality with higher resolution hazard data and validated, comprehensive physical-asset data. We aim to make this data easily accessible with API access.</p>
     <p style="margin: 0;">This phase focuses on expanding the platform’s data quality with higher resolution hazard data and a validated, comprehensive, and normalized physical-asset dataset. We aim to make this data easily accessible with API access.</p>
   </div>
   </div>


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# '''Draw a bounding box''': On the right-hand side below the layers icon, there is a small black box icon. Clicking this will allow you to draw a box (or multiple boxes) over your area of interest.
# '''Draw a bounding box''': On the right-hand side below the layers icon, there is a small black box icon. Clicking this will allow you to draw a box (or multiple boxes) over your area of interest.
# '''Click Download Data''': On the control panel, click the Download Data button to download a CSV file.
# '''Click Download Data''': On the control panel, click the Download Data button to download a CSV file. Data will be downloaded based on the layers and control panel values you have selected.


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=== Download Data Output ===
=== Download Data Output ===
Below is an example of the data structure you might see when you download the CSV file from the Climate Risk Map. For a full list of fields and their descriptions in the download, see '''TO DO'''.
Below is an example of the data structure you might see when you download the CSV file from the Climate Risk Map. For a full list of fields and their descriptions in the download, see [[CRL Map#Data Dictionary|Data Dictionary]].


{| class="wikitable" style="width:100%; text-align: left; background: #f9f9f9; border: 1px solid #ddd; margin-top: 20px;"
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= Methodology =
= Methodology =


This section provides an overview of how the Climate Risk Mapping Application is built and the methodology behind its calculations and data processing.
This section outlines the methodology behind the Climate Risk Mapping Platform, divided into three key categories: Physical Assets, Climate Science, and Risk Metrics.
 
== Physical Assets ==
Physical asset data forms a critical component of climate risk assessment. These assets—such as structures, facilities, and infrastructure—represent the elements that, if affected by climate events, could have significant impacts on communities and economies. Our objective is to develop a standardized physical asset data model that can be represented within a database. This model will contain a comprehensive set of asset properties, enabling downstream integration with climate data for the calculation of asset-specific risk metrics.
 
Currently, we source this data from OpenStreetMap (OSM). The raw data undergoes processing to extract the relevant infrastructure types and prepare them for use in the climate risk model. We cross-reference* the infrastructure data with other external sources to ensure both accuracy and completeness, ultimately creating a reliable dataset for physical asset analysis.
 
[https://github.com/UW-Climate-Risk-Lab/climate-risk-map/tree/main/backend/physical_asset Github: Physical Asset]
 
<nowiki>*</nowiki>''Infrastructure Validation Pipeline Coming Soon''
 
== Climate Science ==
 
A major challenge in assessing climate-related financial risk is bridging the gap between the resolution of climate hazard data and that of physical asset data. Current CMIP6 climate models typically offer climate projections at a resolution of 100 km or coarser, while physical asset data—such as power infrastructure data from OpenStreetMap—often has a resolution of 250 meters or finer. To perform meaningful risk assessments, climate hazard data must be downscaled to best compliment the resolution physical asset data, while maintaining scientific rigor.
 
In our analysis of climate risks related to wildfires in the Pacific Northwest, we propose two approaches: utilizing an established physics-based model and developing an AI-driven model.
 
=== Physics-Based Downscaling Approach ===
 
The physics-based approach involves creating a wildfire weather index using ECMWF's [https://github.com/ecmwf-projects/geff GEFF] wildfire model.
 
* '''Input Data:'''
** Downscaled CMIP6 data provided by NASA (NEX-GDDP-CMIP6, 25 km horizontal resolution, available on AWS).
* '''Key Benefits:'''
** '''High credibility:''' ECMWF is a globally recognized authority in climate data, and using an established model like GEFF would lend credibility to our work.
** '''More ensemble members:''' NEX-GDDP-CMIP6 includes a wide range of climate models and future climate scenarios, allowing for robust scenario analysis in financial risk assessments.
** '''High efficiency:''' The model is diagnostic and computationally efficient, making it suitable for large-scale analyses.
 
* '''Current Progress'''
** We are currently reaching out to ECMWF for guidance on setting up and running the model.
 
=== AI-Based Wildfire Forecast Model ===
This AI model aims to address the forecast gap for seasonal and sub-seasonal wildfire prediction, especially in high-risk areas like Washington and Oregon. By filling the existing forecasting gap, this model would provide valuable insights for proactive wildfire mitigation and financial risk planning.
 
* '''Input data'''
** Historical wildfire records from Washington and Oregon
** Surface weather conditions (e.g., temperature, humidity, wind speed)
** Fuel-related factors (soil moisture, vegetation greenness, etc..)
 
* '''Key Benefits'''
** Machine learning can uncover complex, non-linear patterns in wildfire behavior that physics-based models might miss. It also produces wildfire forecast much faster than physics-based models.
 
* '''Current Progress'''
** Plans to partner with the group led by Pierre Gentine at Columbia University for data sourcing, model development, and validation.
 
While immediate focus is on wildfires, this downscaling approach can be expanded to other climate hazards (e.g., flooding, heatwaves). By continuously improving downscaling techniques and leveraging AI, we aim to build a comprehensive platform for high-resolution climate hazard data that can be used for financial risk analysis across multiple sectors
 
== Risk Metrics ==
Once the physical asset and climate hazard data are accessible, we can begin using these together to calculate measures of physical climate risk. These start with exposure and vulnerability metrics, which are then ultimately use to derive the financial risk and impacts of climate.
 
=== Exposure ===
First, we will want to compute an exposure of our physical assets to the climate hazard. This involves geospatial intersections of the climate data with the physical asset location data. This sets the stage and provides what level of exposure a given physical asset has to the hazard.
 
A prototype of this calculation is computed for power grid infrastructure and a CMIP6 variable for the Climate Risk Map.


== Data Sources ==
[https://github.com/UW-Climate-Risk-Lab/climate-risk-map/tree/main/backend/physical_asset/infraXclimate/scenariomip Github: Prototype Exposure]


=== Climate ===
=== Vulnerability ===
The vulnerability measures the actual damage caused by the exposure of the asset to the hazard. This is a future goal of the Climate Risk Map to compute this.


* '''% Area that is Covered by Burnt Vegetation''': This initial variable for the prototype is sourced from CMIP6 (Coupled Model Intercomparison Project Phase 6), which provides multiple scenarios of future climate conditions.
= Data Dictionary =
The Climate Risk Map generally provides data at the asset level, along with associated properties and climate risk measures (exposure, vulnerability, etc...). Below are the initial fields available for download (subject to change).
 
<div style="font-family: Arial, sans-serif; line-height: 1.6; padding: 10px;">
    <p><strong>osm_id:</strong> <span>Integer – Unique identifier for each OpenStreetMap (OSM) object. This ID is crucial for referencing and linking OSM features with external datasets or within the OSM database.</span></p>
   
    <p><strong>osm_type:</strong> <span>String – Indicates the category of the OSM feature. For power-related features, this type is typically “power,” representing different aspects of power infrastructure such as power lines or substations.</span></p>
   
    <p><strong>tags:</strong> <span>JSON – A JSON-like field that stores metadata about the OSM feature. Tags may include identifiers, names, and other relevant information (e.g., {'ref': 'GCOU-CHJO-3', 'name': 'Grand Coulee-Chief Joseph No 3'}), providing important context about the feature.</span></p>
   
    <p><strong> geometry_wkt:</strong> <span>String – The geometry of the OSM feature in Well-Known Text (WKT) format, which describes the shape and position of the feature using coordinates. For power lines, this typically defines a line geometry.</span></p>
   
    <p><strong>longitude:</strong> <span>Float – Represents the east-west geographic centroid coordinate of the OSM feature, specifying its position on the Earth's surface.</span></p>
   
    <p><strong>latitude:</strong> <span>Float – Represents the north-south geographic centroid coordinate of the OSM feature, specifying its position on the Earth's surface.</span></p>
   
    <p><strong>osm_subtype:</strong> <span>String – A more specific type of OSM feature within the power category. For example, “line” could represent a power transmission line.</span></p>
   
    <p><strong>county_name:</strong> <span>String – The name of the county where the OSM feature is located, helping to contextualize the feature’s geographic location at a local level.</span></p>
   
    <p><strong>city_name:</strong> <span>String (optional) – The name of the city where the OSM feature is located, if applicable. This field may sometimes be empty if the feature is not within a defined city boundary.</span></p>
   
    <p><strong>ssp:</strong> <span>Integer – Likely refers to the Shared Socioeconomic Pathway (SSP) scenario used in climate models. For example, an SSP value of 370 may refer to the SSP3-7.0 scenario, which models future socio-economic development and its impact on climate change.</span></p>
   
    <p><strong>month:</strong> <span>Integer – Represents the month of the year in the dataset, where 1 stands for January, 2 for February, and so on. This is important for analyzing seasonal climate data.</span></p>
   
    <p><strong>decade:</strong> <span>Integer – Represents the decade of the data (e.g., 2060), helping to differentiate climate data projected for different time periods.</span></p>
   
    <p><strong>climate_variable:</strong> <span>String – Specifies the particular climate-related metric of interest (e.g., “burntFractionAll”). This indicates the environmental factor being assessed, such as temperature, precipitation, or other relevant variables.</span></p>
   
    <p><strong>climate_exposure:</strong> <span>Float – Provides a numeric value indicating the degree of exposure the OSM feature has to the specified climate variable. For example, a value of 1.445 for "burntFractionAll" would represent 1.445%.</span></p>
</div>

Latest revision as of 22:28, 15 October 2024

Welcome to the Climate Risk Map!

This guide is designed to walk you through the Climate Risk Map platform, helping you understand the project and how to get started with the tool. Whether you're new to climate risk or an experienced analyst, this guide will walk you through the key features of the platform, including a comprehensive overview of its capabilities, a step-by-step user quick-start guide, detailed methodology behind the data processing, and insights into the data sources powering the platform.

   Climate Risk Map Overview

Climate Risk Map Web Application


Overview

“40 years ago, the US experienced a billion-dollar disaster every four months. Today, we experience a billion-dollar disaster every three weeks." -Laura H. Gillam, Associate Director for Climate, Energy, Environment, and Science, Office of Management and Budget & Wesley E. Yin, Chief Economist, Office of Management and Budget for the White House on April 22nd, 2024


US Billion Dollar Disaster Events
Source: bts.gov

bts.gov

Purpose

The Climate Risk Map was built with this urgency in mind. As climate-related hazards increase in both frequency and severity, the need for transparent, data-driven tools to assess and mitigate risks has never been more critical. The platform's primary purpose is to equip decision-makers with the insights necessary to understand the financial impacts of climate on infrastructure and assets, allowing for more resilient planning and resource allocation.

Objectives

  1. Generate Actionable Insights for Climate Risk: Deliver detailed, asset-level risk data that allow users to evaluate infrastructure exposure and vulnerability to climate hazards over different time horizons, supporting informed planning and risk management.
  2. Facilitate Strategic Adaptation and Resilience: Provide long-term climate risk projections under various scenarios to guide resource prioritization and adaptation strategies for public and private stakeholders, enhancing resilience across sectors.
  3. Ensure Transparency and Accessibility: Develop an easily accessible open-source platform that offers transparency into data sources, methodologies, and models. This approach promotes trust, regulatory alignment, and collaboration, while serving the needs of academic, government, and industry users.

By meeting these objectives, the Climate Risk Map seeks to bridge the gap between climate science and practical, real-world decision-making, ensuring that all sectors have the necessary information to build resilience against future climate challenges.

Roadmap

The Climate Risk Map is in its early stages of development, and our journey will unfold in multiple phases as we build out the platform’s capabilities. We are just getting started, and our vision is to continuously evolve the platform, responding to the needs of stakeholders and advancing our understanding of climate risks.

Phase 1: Platform Foundation (Current)

We are laying the groundwork for the platform by building its core components and integrating open-source datasets, such as key climate hazards, infrastructure data, and economic metrics. This phase is about establishing a solid base that future capabilities can grow upon.

Phase 2: Expansion of Data

This phase focuses on expanding the platform’s data quality with higher resolution hazard data and a validated, comprehensive, and normalized physical-asset dataset. We aim to make this data easily accessible with API access.

Phase 3: Advanced Analytics Features

Introduce advanced analytics capabilities to provide more sophisticated assessments of climate risks. This includes scenario analysis features, enhanced financial risk metrics, and additional visualizations that enable stakeholders to better understand and prepare for climate-related impacts.

The Climate Risk Map is in its early stages of development, and our vision is to continuously evolve the platform. We aim to respond to the needs of stakeholders and advance our understanding of climate risks over time. This roadmap is intended to be flexible, adapting as new challenges, data, and community input shape the project’s direction.

Community Engagement

Community engagement is an integral part of the Climate Risk Map’s development. Our goal is to collaborate closely with public, private, and academic stakeholders to ensure that the platform effectively serves the diverse needs of its users. We are committed to fostering an open-source community where contributors can help validate models, provide local insights, and enhance platform functionality. By involving the community, we aim to make the Climate Risk Map a shared, evolving resource that is relevant, transparent, and impactful.

Quick-Start Guide

Follow this step-by-step guide for a basic overview of the map functionality. The map can be accessed here.

Selecting Climate Scenario Parameters

First, we need to select a combination of parameters for the desired climate scenario.

  • Select a Climate Risk Measure: Start by choosing a climate metric of interest from the drop-down menu. These are climate hazards curated by our team that may pose potential risks to infrastructure.


  • Choose a Scenario: Select one of the available climate scenarios (e.g., SSP126 for low emissions, SSP585 for high emissions). Scenarios help you understand potential futures under different climate action pathways.


  • Select a Timescale: Use the timeline slider to choose the time period you are interested in, ranging from the 2020s to the 2100s for all months. This lets you see how climate risks evolve over time for particular months of the year.


The example on the right illustrates a scenario where the selected measure is "% Area Covered by Burnt Vegetation"—used as a proxy for wildfire risk—under a moderate emissions projection for August in the 2060s.

Dropdown Selectors

Selecting Infrastructure Overlays

Second, we need to select the specific types of infrastructure we are interested in visualizing.

  • Select Infrastructure Overlays: On the right-hand side, you'll see a layers icon. Hover over it to reveal the available infrastructure overlays. In this example, the available infrastructure includes specific types of power grid data, which provides insight into its exposure under the selected climate scenario.

Dropdown Selectors

Download Data

From here, you can explore the map and your particular areas of interest visually to get a sense of asset exposure. You may wish to download the data to do an offline analysis, which can be done easily.

  1. Draw a bounding box: On the right-hand side below the layers icon, there is a small black box icon. Clicking this will allow you to draw a box (or multiple boxes) over your area of interest.
  2. Click Download Data: On the control panel, click the Download Data button to download a CSV file. Data will be downloaded based on the layers and control panel values you have selected.

Dropdown Selectors

Download Data Output

Below is an example of the data structure you might see when you download the CSV file from the Climate Risk Map. For a full list of fields and their descriptions in the download, see Data Dictionary.

OSM ID OSM Subtype County Name Tags SSP Month Decade Climate Variable Climate Exposure
41543109 Line Douglas County {'name': 'Grand Coulee-Chief Joseph No 3', 'power': 'line', 'cables': '3', 'voltage': '500000', 'operator': 'Bonneville Power Administration'} 370 8 2060 Burnt Fraction All 0.945
41543169 Line Douglas County {'power': 'line'} 370 8 2060 Burnt Fraction All 1.445
41543169 Line Grant County {'power': 'line'} 370 8 2060 Burnt Fraction All 1.445
40531749 Line Douglas County {'power': 'line'} 370 8 2060 Burnt Fraction All 2.435
40531749 Line Grant County {'power': 'line'} 370 8 2060 Burnt Fraction All 1.689

Methodology

This section outlines the methodology behind the Climate Risk Mapping Platform, divided into three key categories: Physical Assets, Climate Science, and Risk Metrics.

Physical Assets

Physical asset data forms a critical component of climate risk assessment. These assets—such as structures, facilities, and infrastructure—represent the elements that, if affected by climate events, could have significant impacts on communities and economies. Our objective is to develop a standardized physical asset data model that can be represented within a database. This model will contain a comprehensive set of asset properties, enabling downstream integration with climate data for the calculation of asset-specific risk metrics.

Currently, we source this data from OpenStreetMap (OSM). The raw data undergoes processing to extract the relevant infrastructure types and prepare them for use in the climate risk model. We cross-reference* the infrastructure data with other external sources to ensure both accuracy and completeness, ultimately creating a reliable dataset for physical asset analysis.

Github: Physical Asset

*Infrastructure Validation Pipeline Coming Soon

Climate Science

A major challenge in assessing climate-related financial risk is bridging the gap between the resolution of climate hazard data and that of physical asset data. Current CMIP6 climate models typically offer climate projections at a resolution of 100 km or coarser, while physical asset data—such as power infrastructure data from OpenStreetMap—often has a resolution of 250 meters or finer. To perform meaningful risk assessments, climate hazard data must be downscaled to best compliment the resolution physical asset data, while maintaining scientific rigor.

In our analysis of climate risks related to wildfires in the Pacific Northwest, we propose two approaches: utilizing an established physics-based model and developing an AI-driven model.

Physics-Based Downscaling Approach

The physics-based approach involves creating a wildfire weather index using ECMWF's GEFF wildfire model.

  • Input Data:
    • Downscaled CMIP6 data provided by NASA (NEX-GDDP-CMIP6, 25 km horizontal resolution, available on AWS).
  • Key Benefits:
    • High credibility: ECMWF is a globally recognized authority in climate data, and using an established model like GEFF would lend credibility to our work.
    • More ensemble members: NEX-GDDP-CMIP6 includes a wide range of climate models and future climate scenarios, allowing for robust scenario analysis in financial risk assessments.
    • High efficiency: The model is diagnostic and computationally efficient, making it suitable for large-scale analyses.
  • Current Progress
    • We are currently reaching out to ECMWF for guidance on setting up and running the model.

AI-Based Wildfire Forecast Model

This AI model aims to address the forecast gap for seasonal and sub-seasonal wildfire prediction, especially in high-risk areas like Washington and Oregon. By filling the existing forecasting gap, this model would provide valuable insights for proactive wildfire mitigation and financial risk planning.

  • Input data
    • Historical wildfire records from Washington and Oregon
    • Surface weather conditions (e.g., temperature, humidity, wind speed)
    • Fuel-related factors (soil moisture, vegetation greenness, etc..)
  • Key Benefits
    • Machine learning can uncover complex, non-linear patterns in wildfire behavior that physics-based models might miss. It also produces wildfire forecast much faster than physics-based models.
  • Current Progress
    • Plans to partner with the group led by Pierre Gentine at Columbia University for data sourcing, model development, and validation.

While immediate focus is on wildfires, this downscaling approach can be expanded to other climate hazards (e.g., flooding, heatwaves). By continuously improving downscaling techniques and leveraging AI, we aim to build a comprehensive platform for high-resolution climate hazard data that can be used for financial risk analysis across multiple sectors

Risk Metrics

Once the physical asset and climate hazard data are accessible, we can begin using these together to calculate measures of physical climate risk. These start with exposure and vulnerability metrics, which are then ultimately use to derive the financial risk and impacts of climate.

Exposure

First, we will want to compute an exposure of our physical assets to the climate hazard. This involves geospatial intersections of the climate data with the physical asset location data. This sets the stage and provides what level of exposure a given physical asset has to the hazard.

A prototype of this calculation is computed for power grid infrastructure and a CMIP6 variable for the Climate Risk Map.

Github: Prototype Exposure

Vulnerability

The vulnerability measures the actual damage caused by the exposure of the asset to the hazard. This is a future goal of the Climate Risk Map to compute this.

Data Dictionary

The Climate Risk Map generally provides data at the asset level, along with associated properties and climate risk measures (exposure, vulnerability, etc...). Below are the initial fields available for download (subject to change).

osm_id: Integer – Unique identifier for each OpenStreetMap (OSM) object. This ID is crucial for referencing and linking OSM features with external datasets or within the OSM database.

osm_type: String – Indicates the category of the OSM feature. For power-related features, this type is typically “power,” representing different aspects of power infrastructure such as power lines or substations.

tags: JSON – A JSON-like field that stores metadata about the OSM feature. Tags may include identifiers, names, and other relevant information (e.g., {'ref': 'GCOU-CHJO-3', 'name': 'Grand Coulee-Chief Joseph No 3'}), providing important context about the feature.

geometry_wkt: String – The geometry of the OSM feature in Well-Known Text (WKT) format, which describes the shape and position of the feature using coordinates. For power lines, this typically defines a line geometry.

longitude: Float – Represents the east-west geographic centroid coordinate of the OSM feature, specifying its position on the Earth's surface.

latitude: Float – Represents the north-south geographic centroid coordinate of the OSM feature, specifying its position on the Earth's surface.

osm_subtype: String – A more specific type of OSM feature within the power category. For example, “line” could represent a power transmission line.

county_name: String – The name of the county where the OSM feature is located, helping to contextualize the feature’s geographic location at a local level.

city_name: String (optional) – The name of the city where the OSM feature is located, if applicable. This field may sometimes be empty if the feature is not within a defined city boundary.

ssp: Integer – Likely refers to the Shared Socioeconomic Pathway (SSP) scenario used in climate models. For example, an SSP value of 370 may refer to the SSP3-7.0 scenario, which models future socio-economic development and its impact on climate change.

month: Integer – Represents the month of the year in the dataset, where 1 stands for January, 2 for February, and so on. This is important for analyzing seasonal climate data.

decade: Integer – Represents the decade of the data (e.g., 2060), helping to differentiate climate data projected for different time periods.

climate_variable: String – Specifies the particular climate-related metric of interest (e.g., “burntFractionAll”). This indicates the environmental factor being assessed, such as temperature, precipitation, or other relevant variables.

climate_exposure: Float – Provides a numeric value indicating the degree of exposure the OSM feature has to the specified climate variable. For example, a value of 1.445 for "burntFractionAll" would represent 1.445%.